Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions. © 2011 Elsevier B.V. All rights reserved.

Personal Health System architecture for stress monitoring and support to clinical decisions

Tartarisco G
Primo
;
Arnao A;Ferro M;Pioggia G
Ultimo
2012

Abstract

Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions. © 2011 Elsevier B.V. All rights reserved.
Campo DC Valore Lingua
dc.authority.ancejournal COMPUTER COMMUNICATIONS en
dc.authority.orgunit Istituto di Fisiologia Clinica - IFC en
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC en
dc.authority.people Tartarisco G en
dc.authority.people Baldus G en
dc.authority.people Corda D en
dc.authority.people Raso R en
dc.authority.people Arnao A en
dc.authority.people Ferro M en
dc.authority.people Gaggioli A en
dc.authority.people Pioggia G en
dc.authority.project Interreality in the management and treatment of stress-related disorders en
dc.collection.id.s b3f88f24-048a-4e43-8ab1-6697b90e068e *
dc.collection.name 01.01 Articolo in rivista *
dc.contributor.appartenenza Istituto di linguistica computazionale "Antonio Zampolli" - ILC *
dc.contributor.appartenenza Istituto per la Ricerca e l'Innovazione Biomedica -IRIB *
dc.contributor.appartenenza.mi 918 *
dc.contributor.appartenenza.mi 1103 *
dc.date.accessioned 2024/02/19 15:39:12 -
dc.date.available 2024/02/19 15:39:12 -
dc.date.firstsubmission 2024/07/16 12:28:08 *
dc.date.issued 2012 -
dc.date.submission 2024/07/16 12:28:08 *
dc.description.abstracteng Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions. © 2011 Elsevier B.V. All rights reserved. -
dc.description.affiliations Istituto di Fisiologia Clinica, CNR -
dc.description.allpeople Tartarisco, G; Baldus, G; Corda, D; Raso, R; Arnao, A; Ferro, M; Gaggioli, A; Pioggia, G -
dc.description.allpeopleoriginal Tartarisco G, Baldus G, Corda D, Raso R, Arnao A, Ferro M, Gaggioli A, Pioggia G en
dc.description.fulltext open en
dc.description.numberofauthors 8 -
dc.identifier.doi 10.1016/j.comcom.2011.11.015 en
dc.identifier.isi WOS:000307203900003 -
dc.identifier.scopus 2-s2.0-84861999702 en
dc.identifier.uri https://hdl.handle.net/20.500.14243/226738 -
dc.identifier.url http://www.sciencedirect.com/science/article/pii/S0140366411003720 en
dc.language.iso eng en
dc.miur.last.status.update 2024-07-13T08:34:52Z *
dc.relation.firstpage 1296 en
dc.relation.issue 11 en
dc.relation.lastpage 1305 en
dc.relation.numberofpages 10 en
dc.relation.projectAcronym INTERSTRESS en
dc.relation.projectAwardNumber 247685 en
dc.relation.projectAwardTitle Interreality in the management and treatment of stress-related disorders en
dc.relation.projectFunderName - en
dc.relation.projectFundingStream FP7 en
dc.relation.volume 35 en
dc.subject.keywords Autonomic sympathovagal balance; Autoregressive model; Clinical decision support system; Pervasive healthcare architecture; Stress detection -
dc.subject.singlekeyword Autonomic sympathovagal balance *
dc.subject.singlekeyword Autoregressive model *
dc.subject.singlekeyword Clinical decision support system *
dc.subject.singlekeyword Pervasive healthcare architecture *
dc.subject.singlekeyword Stress detection *
dc.title Personal Health System architecture for stress monitoring and support to clinical decisions en
dc.type.driver info:eu-repo/semantics/article -
dc.type.full 01 Contributo su Rivista::01.01 Articolo in rivista it
dc.type.miur 262 -
dc.type.referee Sì, ma tipo non specificato en
dc.ugov.descaux1 196454 -
iris.isi.extIssued 2012 -
iris.isi.extTitle Personal Health System architecture for stress monitoring and support to clinical decisions -
iris.mediafilter.data 2025/03/28 03:33:52 *
iris.orcid.lastModifiedDate 2025/03/13 01:48:00 *
iris.orcid.lastModifiedMillisecond 1741826880205 *
iris.scopus.extIssued 2012 -
iris.scopus.extTitle Personal Health System architecture for stress monitoring and support to clinical decisions -
iris.sitodocente.maxattempts 1 -
iris.unpaywall.doi 10.1016/j.comcom.2011.11.015 *
iris.unpaywall.isoa false *
iris.unpaywall.journalisindoaj false *
iris.unpaywall.metadataCallLastModified 05/05/2026 05:18:39 -
iris.unpaywall.metadataCallLastModifiedMillisecond 1777951119982 -
iris.unpaywall.oastatus closed *
isi.authority.ancejournal COMPUTER COMMUNICATIONS###0140-3664 *
isi.authority.sdg Goal 3: Good health and well-being###12083 *
isi.category IQ *
isi.category YE *
isi.category ET *
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.affiliation University of Messina -
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.affiliation IRCCS Istituto Auxologico Italiano -
isi.contributor.affiliation Consiglio Nazionale delle Ricerche (CNR) -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.country Italy -
isi.contributor.name Gennaro -
isi.contributor.name Giovanni -
isi.contributor.name Daniele -
isi.contributor.name Rossella -
isi.contributor.name Antonino -
isi.contributor.name Marcello -
isi.contributor.name Andrea -
isi.contributor.name Giovanni -
isi.contributor.researcherId AAY-3063-2020 -
isi.contributor.researcherId CFE-6166-2022 -
isi.contributor.researcherId CKO-0079-2022 -
isi.contributor.researcherId DNC-0828-2022 -
isi.contributor.researcherId IXD-3006-2023 -
isi.contributor.researcherId D-6260-2016 -
isi.contributor.researcherId B-4643-2013 -
isi.contributor.researcherId C-8119-2016 -
isi.contributor.subaffiliation Inst Clin Physiol IFC -
isi.contributor.subaffiliation Inst Clin Physiol IFC -
isi.contributor.subaffiliation Inst Clin Physiol IFC -
isi.contributor.subaffiliation Inst Clin Physiol IFC -
isi.contributor.subaffiliation Fac Stat Sci -
isi.contributor.subaffiliation Inst Computat Linguist Antonio Zampolli ILC -
isi.contributor.subaffiliation ATN P Lab -
isi.contributor.subaffiliation Inst Clin Physiol IFC -
isi.contributor.surname Tartarisco -
isi.contributor.surname Baldus -
isi.contributor.surname Corda -
isi.contributor.surname Raso -
isi.contributor.surname Arnao -
isi.contributor.surname Ferro -
isi.contributor.surname Gaggioli -
isi.contributor.surname Pioggia -
isi.date.issued 2012 *
isi.description.abstracteng Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions. (c) 2011 Elsevier B.V. All rights reserved. *
isi.description.allpeopleoriginal Tartarisco, G; Baldus, G; Corda, D; Raso, R; Arnao, A; Ferro, M; Gaggioli, A; Pioggia, G; *
isi.document.sourcetype WOS.SCI *
isi.document.type Article *
isi.document.types Article *
isi.identifier.doi 10.1016/j.comcom.2011.11.015 *
isi.identifier.eissn 1873-703X *
isi.identifier.isi WOS:000307203900003 *
isi.journal.journaltitle COMPUTER COMMUNICATIONS *
isi.journal.journaltitleabbrev COMPUT COMMUN *
isi.language.original English *
isi.publisher.place RADARWEG 29, 1043 NX AMSTERDAM, NETHERLANDS *
isi.relation.firstpage 1296 *
isi.relation.issue 11 *
isi.relation.lastpage 1305 *
isi.relation.volume 35 *
isi.title Personal Health System architecture for stress monitoring and support to clinical decisions *
scopus.authority.ancejournal COMPUTER COMMUNICATIONS###0140-3664 *
scopus.category 1705 *
scopus.contributor.affiliation Institute of Clinical Physiology (IFC) -
scopus.contributor.affiliation Institute of Clinical Physiology (IFC) -
scopus.contributor.affiliation Institute of Clinical Physiology (IFC) -
scopus.contributor.affiliation Institute of Clinical Physiology (IFC) -
scopus.contributor.affiliation University of Messina -
scopus.contributor.affiliation Institute of Computational Linguistic Antonio Zampolli (ILC) -
scopus.contributor.affiliation Istituto Auxologico Italiano -
scopus.contributor.affiliation Institute of Clinical Physiology (IFC) -
scopus.contributor.afid 60009071 -
scopus.contributor.afid 60009071 -
scopus.contributor.afid 60009071 -
scopus.contributor.afid 60009071 -
scopus.contributor.afid 60011576 -
scopus.contributor.afid 60021199 -
scopus.contributor.afid 60006646 -
scopus.contributor.afid 60009071 -
scopus.contributor.auid 36168586800 -
scopus.contributor.auid 51863124700 -
scopus.contributor.auid 51863400200 -
scopus.contributor.auid 54581537000 -
scopus.contributor.auid 57212515703 -
scopus.contributor.auid 15759406100 -
scopus.contributor.auid 6603138127 -
scopus.contributor.auid 8957312900 -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.country Italy -
scopus.contributor.dptid -
scopus.contributor.dptid -
scopus.contributor.dptid -
scopus.contributor.dptid -
scopus.contributor.dptid 112881723 -
scopus.contributor.dptid 109964314 -
scopus.contributor.dptid 108116841 -
scopus.contributor.dptid -
scopus.contributor.name Gennaro -
scopus.contributor.name Giovanni -
scopus.contributor.name Daniele -
scopus.contributor.name Rossella -
scopus.contributor.name Antonino -
scopus.contributor.name Marcello -
scopus.contributor.name Andrea -
scopus.contributor.name Giovanni -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.subaffiliation Faculty of Statistical Science; -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.subaffiliation ATN-P Lab; -
scopus.contributor.subaffiliation National Research Council of Italy (CNR); -
scopus.contributor.surname Tartarisco -
scopus.contributor.surname Baldus -
scopus.contributor.surname Corda -
scopus.contributor.surname Raso -
scopus.contributor.surname Arnao -
scopus.contributor.surname Ferro -
scopus.contributor.surname Gaggioli -
scopus.contributor.surname Pioggia -
scopus.date.issued 2012 *
scopus.description.abstracteng Developments in computational techniques including clinical decision support systems, information processing, wireless communication and data mining hold new premises in Personal Health Systems. Pervasive Healthcare system architecture finds today an effective application and represents in perspective a real technological breakthrough promoting a paradigm shift from diagnosis and treatment of patients based on symptoms to diagnosis and treatment based on risk assessment. Such architectures must be able to collect and manage a large quantity of data supporting the physicians in their decision process through a continuous pervasive remote monitoring model aimed to enhance the understanding of the dynamic disease evolution and personal risk. In this work an automatic simple, compact, wireless, personalized and cost efficient pervasive architecture for the evaluation of the stress state of individual subjects suitable for prolonged stress monitoring during normal activity is described. A novel integrated processing approach based on an autoregressive model, artificial neural networks and fuzzy logic modeling allows stress conditions to be automatically identified with a mobile setting analysing features of the electrocardiographic signals and human motion. The performances of the reported architecture were assessed in terms of classification of stress conditions. © 2011 Elsevier B.V. All rights reserved. *
scopus.description.allpeopleoriginal Tartarisco G.; Baldus G.; Corda D.; Raso R.; Arnao A.; Ferro M.; Gaggioli A.; Pioggia G. *
scopus.differences scopus.subject.keywords *
scopus.differences scopus.description.allpeopleoriginal *
scopus.document.type ar *
scopus.document.types ar *
scopus.funding.funders 501100000780 - European Commission; 100011102 - Seventh Framework Programme; *
scopus.funding.ids 247685; *
scopus.identifier.doi 10.1016/j.comcom.2011.11.015 *
scopus.identifier.pui 51761947 *
scopus.identifier.scopus 2-s2.0-84861999702 *
scopus.journal.sourceid 13681 *
scopus.language.iso eng *
scopus.relation.firstpage 1296 *
scopus.relation.issue 11 *
scopus.relation.lastpage 1305 *
scopus.relation.volume 35 *
scopus.subject.keywords Autonomic sympathovagal balance; Autoregressive model; Clinical decision support system; Pervasive healthcare architecture; Stress detection; *
scopus.title Personal Health System architecture for stress monitoring and support to clinical decisions *
scopus.titleeng Personal Health System architecture for stress monitoring and support to clinical decisions *
Appare nelle tipologie: 01.01 Articolo in rivista
File in questo prodotto:
File Dimensione Formato  
prod_196454-doc_42773.pdf

accesso aperto

Descrizione: Personal Health System architecture for stress monitoring and support to clinical decisions
Tipologia: Versione Editoriale (PDF)
Licenza: Dominio pubblico
Dimensione 1.42 MB
Formato Adobe PDF
1.42 MB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/226738
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 80
  • ???jsp.display-item.citation.isi??? 42
social impact